Study of SEIRD Adaptive-Compartmental Model of COVID-19 Epidemic Spread in Russian Federation Using Optimization Methods

Q3 Mathematics
S. Levashkin, S. Agapov, O. Zakharova, K. N. Ivanov, E. S. Kuzmina, V. Sokolovsky, A. S. Monasova, A. V. Vorobiev, D. N. Apeshin
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引用次数: 1

Abstract

A systemic approach to the study of a new multi-parameter model of the COVID-19 pandemic spread is proposed, which has the ultimate goal of optimizing the manage parameters of the model. The approach consists of two main parts: 1) an adaptive-compartmental model of the epidemic spread, which is a generalization of the classical SEIR model, and 2) a module for adjusting the parameters of this model from the epidemic data using intelligent optimization methods. Data for testing the proposed approach using the pandemic spread in some regions of the Russian Federation were collected on a daily basis from open sources during the first 130 days of the epidemic, starting in March 2020. For this, a so-called data farm was developed and implemented on a local server (an automated system for collecting, storing and preprocessing data from heterogeneous sources, which, in combination with optimization methods, allows most accurately tune the parameters of the model, thus turning it into an intelligent system to support management decisions). Among all model parameters used, the most important are the rate of infection transmission, the government actions and the population reaction.
基于优化方法的俄罗斯联邦新冠肺炎疫情传播SEIRD自适应区隔模型研究
提出了一种以优化模型管理参数为最终目标的新型COVID-19大流行传播多参数模型的系统研究方法。该方法主要由两部分组成:1)对经典SEIR模型进行推广的自适应区室模型;2)利用智能优化方法根据疫情数据调整模型参数的模块。从2020年3月开始,在疫情爆发的头130天内,每天从开放来源收集数据,以利用俄罗斯联邦一些地区的大流行传播来测试拟议的方法。为此,在本地服务器上开发并实现了一个所谓的数据场(用于收集、存储和预处理来自异构数据源的数据的自动化系统,它与优化方法相结合,可以最准确地调整模型的参数,从而将其转变为支持管理决策的智能系统)。在使用的所有模型参数中,最重要的是感染传播率、政府行为和人口反应。
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来源期刊
Mathematical Biology and Bioinformatics
Mathematical Biology and Bioinformatics Mathematics-Applied Mathematics
CiteScore
1.10
自引率
0.00%
发文量
13
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